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Machine-learning informed macro-meteorological models for the near-maritime environment

机译:机器学习通知近海环境的宏观气象模型

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摘要

Macro-meteorological models predict optical turbulence as a function of weather data. Existing models often struggle to accurately predict the rapid fluctuations in C-n(2) in near-maritime environments. Seven months of C-n(2) field measurements were collected along an 890 m scintillometer link over the Severn River in Annapolis, Maryland. This time series was augmented with local meteorological measurements to capture bulk-atmospheric weather measurements. The prediction accuracy of existing macro-meteorological models was analyzed in a range of conditions. Next, machine-learning techniques were applied to train new macro-meteorological models using the measured C-n(2) and measured environmental parameters. Finally, the C-n(2) predictions generated by the existing macrometeorological models and new machine-learning informed models were compared for four representative days fromthe data set. These new models, under most conditions, demonstrated a higher overall C-n(2) prediction accuracy, and were better able to track optical turbulence. Further tuning and machine-learning architectural changes could further improve model performance. (C) 2021 Optical Society of America
机译:宏观气象模型根据天气数据预测光学湍流。现有模型往往难以准确预测近海环境中C-n(2)的快速波动。沿着马里兰州安纳波利斯塞文河的890米闪烁计链路收集了七个月的C-n(2)现场测量数据。该时间序列通过本地气象测量进行了扩充,以获取大量大气天气测量数据。在一系列条件下分析了现有宏观气象模型的预测精度。接下来,应用机器学习技术,使用测量的C-n(2)和测量的环境参数来训练新的宏观气象模型。最后,将现有宏观气象模型和新的机器学习信息模型生成的C-n(2)预测从数据集中比较了四个代表日。在大多数情况下,这些新模型显示出更高的总体C-n(2)预测精度,并且能够更好地跟踪光学湍流。进一步的调整和机器学习体系结构更改可以进一步提高模型性能。(2021)美国光学学会

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  • 来源
    《Applied optics》 |2021年第11期|共14页
  • 作者单位

    US Naval Acad Mech Engn Dept 1 Wilson Rd Annapolis MD 21402 USA;

    US Naval Acad Elect Engn Dept 1 Wilson Rd Annapolis MD 21402 USA;

    US Naval Acad Elect Engn Dept 1 Wilson Rd Annapolis MD 21402 USA;

    US Naval Acad Mech Engn Dept 1 Wilson Rd Annapolis MD 21402 USA;

    US Naval Acad Mech Engn Dept 1 Wilson Rd Annapolis MD 21402 USA;

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  • 正文语种 eng
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